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The new spacy pretrain command implemented BERT/ULMFit/etc-like transfer learning, using our Language Modelling with Approximate Outputs version of BERT's cloze task. Pretraining is convenient, but in some ways it's a bit of a strange solution. All we're doing is initialising the weights. At the same time, we're putting a lot of work into our optimisation so that it's less sensitive to initial conditions, and more likely to find good optima. I discuss this a bit in the pseudo-rehearsal blog post: https://explosion.ai/blog/pseudo-rehearsal-catastrophic-forgetting Support semi-supervised learning in spacy train One obvious way to improve these pretraining methods is to do multi-task learning, instead of just transfer learning. This has been shown to work very well: https://arxiv.org/pdf/1809.08370.pdf . This patch makes it easy to do this sort of thing. Add a new argument to spacy train, --raw-text. This takes a jsonl file with unlabelled data that can be used in arbitrary ways to do semi-supervised learning. Add a new method to the Language class and to pipeline components, .rehearse(). This is like .update(), but doesn't expect GoldParse objects. It takes a batch of Doc objects, and performs an update on some semi-supervised objective. Move the BERT-LMAO objective out from spacy/cli/pretrain.py into spacy/_ml.py, so we can create a new pipeline component, ClozeMultitask. This can be specified as a parser or NER multitask in the spacy train command. Example usage: python -m spacy train en ./tmp ~/data/en-core-web/train/nw.json ~/data/en-core-web/dev/nw.json --pipeline parser --raw-textt ~/data/unlabelled/reddit-100k.jsonl --vectors en_vectors_web_lg --parser-multitasks cloze Implement rehearsal methods for pipeline components The new --raw-text argument and nlp.rehearse() method also gives us a good place to implement the the idea in the pseudo-rehearsal blog post in the parser. This works as follows: Add a new nlp.resume_training() method. This allocates copies of pre-trained models in the pipeline, setting things up for the rehearsal updates. It also returns an optimizer object. This also greatly reduces confusion around the nlp.begin_training() method, which randomises the weights, making it not suitable for adding new labels or otherwise fine-tuning a pre-trained model. Implement rehearsal updates on the Parser class, making it available for the dependency parser and NER. During rehearsal, the initial model is used to supervise the model being trained. The current model is asked to match the predictions of the initial model on some data. This minimises catastrophic forgetting, by keeping the model's predictions close to the original. See the blog post for details. Implement rehearsal updates for tagger Implement rehearsal updates for text categoriz
880 lines
34 KiB
Python
880 lines
34 KiB
Python
# coding: utf8
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from __future__ import absolute_import, unicode_literals
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import random
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import itertools
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import weakref
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import functools
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from collections import OrderedDict
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from contextlib import contextmanager
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from copy import copy, deepcopy
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from thinc.neural import Model
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import srsly
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from .tokenizer import Tokenizer
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from .vocab import Vocab
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from .lemmatizer import Lemmatizer
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from .pipeline import DependencyParser, Tensorizer, Tagger, EntityRecognizer
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from .pipeline import SimilarityHook, TextCategorizer, SentenceSegmenter
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from .pipeline import merge_noun_chunks, merge_entities, merge_subtokens
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from .pipeline import EntityRuler
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from .compat import izip, basestring_
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from .gold import GoldParse
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from .scorer import Scorer
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from ._ml import link_vectors_to_models, create_default_optimizer
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from .attrs import IS_STOP
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from .lang.punctuation import TOKENIZER_PREFIXES, TOKENIZER_SUFFIXES
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from .lang.punctuation import TOKENIZER_INFIXES
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from .lang.tokenizer_exceptions import TOKEN_MATCH
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from .lang.tag_map import TAG_MAP
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from .lang.lex_attrs import LEX_ATTRS, is_stop
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from .errors import Errors, Warnings, user_warning
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from . import util
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from . import about
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class BaseDefaults(object):
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@classmethod
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def create_lemmatizer(cls, nlp=None):
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return Lemmatizer(
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cls.lemma_index, cls.lemma_exc, cls.lemma_rules, cls.lemma_lookup
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)
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@classmethod
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def create_vocab(cls, nlp=None):
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lemmatizer = cls.create_lemmatizer(nlp)
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lex_attr_getters = dict(cls.lex_attr_getters)
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# This is messy, but it's the minimal working fix to Issue #639.
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lex_attr_getters[IS_STOP] = functools.partial(is_stop, stops=cls.stop_words)
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vocab = Vocab(
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lex_attr_getters=lex_attr_getters,
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tag_map=cls.tag_map,
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lemmatizer=lemmatizer,
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)
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for tag_str, exc in cls.morph_rules.items():
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for orth_str, attrs in exc.items():
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vocab.morphology.add_special_case(tag_str, orth_str, attrs)
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return vocab
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@classmethod
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def create_tokenizer(cls, nlp=None):
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rules = cls.tokenizer_exceptions
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token_match = cls.token_match
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prefix_search = (
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util.compile_prefix_regex(cls.prefixes).search if cls.prefixes else None
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)
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suffix_search = (
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util.compile_suffix_regex(cls.suffixes).search if cls.suffixes else None
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)
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infix_finditer = (
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util.compile_infix_regex(cls.infixes).finditer if cls.infixes else None
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)
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vocab = nlp.vocab if nlp is not None else cls.create_vocab(nlp)
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return Tokenizer(
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vocab,
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rules=rules,
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prefix_search=prefix_search,
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suffix_search=suffix_search,
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infix_finditer=infix_finditer,
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token_match=token_match,
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)
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pipe_names = ["tagger", "parser", "ner"]
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token_match = TOKEN_MATCH
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prefixes = tuple(TOKENIZER_PREFIXES)
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suffixes = tuple(TOKENIZER_SUFFIXES)
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infixes = tuple(TOKENIZER_INFIXES)
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tag_map = dict(TAG_MAP)
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tokenizer_exceptions = {}
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stop_words = set()
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lemma_rules = {}
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lemma_exc = {}
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lemma_index = {}
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lemma_lookup = {}
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morph_rules = {}
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lex_attr_getters = LEX_ATTRS
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syntax_iterators = {}
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class Language(object):
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"""A text-processing pipeline. Usually you'll load this once per process,
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and pass the instance around your application.
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Defaults (class): Settings, data and factory methods for creating the `nlp`
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object and processing pipeline.
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lang (unicode): Two-letter language ID, i.e. ISO code.
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"""
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Defaults = BaseDefaults
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lang = None
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factories = {
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"tokenizer": lambda nlp: nlp.Defaults.create_tokenizer(nlp),
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"tensorizer": lambda nlp, **cfg: Tensorizer(nlp.vocab, **cfg),
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"tagger": lambda nlp, **cfg: Tagger(nlp.vocab, **cfg),
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"parser": lambda nlp, **cfg: DependencyParser(nlp.vocab, **cfg),
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"ner": lambda nlp, **cfg: EntityRecognizer(nlp.vocab, **cfg),
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"similarity": lambda nlp, **cfg: SimilarityHook(nlp.vocab, **cfg),
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"textcat": lambda nlp, **cfg: TextCategorizer(nlp.vocab, **cfg),
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"sentencizer": lambda nlp, **cfg: SentenceSegmenter(nlp.vocab, **cfg),
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"merge_noun_chunks": lambda nlp, **cfg: merge_noun_chunks,
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"merge_entities": lambda nlp, **cfg: merge_entities,
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"merge_subtokens": lambda nlp, **cfg: merge_subtokens,
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"entity_ruler": lambda nlp, **cfg: EntityRuler(nlp, **cfg),
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}
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def __init__(
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self, vocab=True, make_doc=True, max_length=10 ** 6, meta={}, **kwargs
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):
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"""Initialise a Language object.
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vocab (Vocab): A `Vocab` object. If `True`, a vocab is created via
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`Language.Defaults.create_vocab`.
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make_doc (callable): A function that takes text and returns a `Doc`
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object. Usually a `Tokenizer`.
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meta (dict): Custom meta data for the Language class. Is written to by
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models to add model meta data.
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max_length (int) :
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Maximum number of characters in a single text. The current v2 models
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may run out memory on extremely long texts, due to large internal
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allocations. You should segment these texts into meaningful units,
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e.g. paragraphs, subsections etc, before passing them to spaCy.
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Default maximum length is 1,000,000 characters (1mb). As a rule of
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thumb, if all pipeline components are enabled, spaCy's default
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models currently requires roughly 1GB of temporary memory per
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100,000 characters in one text.
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RETURNS (Language): The newly constructed object.
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"""
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user_factories = util.get_entry_points("spacy_factories")
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for factory in user_factories.keys():
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if factory in self.factories:
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user_warning(Warnings.W009.format(name=factory))
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self.factories.update(user_factories)
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self._meta = dict(meta)
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self._path = None
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if vocab is True:
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factory = self.Defaults.create_vocab
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vocab = factory(self, **meta.get("vocab", {}))
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if vocab.vectors.name is None:
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vocab.vectors.name = meta.get("vectors", {}).get("name")
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self.vocab = vocab
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if make_doc is True:
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factory = self.Defaults.create_tokenizer
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make_doc = factory(self, **meta.get("tokenizer", {}))
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self.tokenizer = make_doc
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self.pipeline = []
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self.max_length = max_length
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self._optimizer = None
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@property
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def path(self):
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return self._path
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@property
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def meta(self):
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self._meta.setdefault("lang", self.vocab.lang)
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self._meta.setdefault("name", "model")
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self._meta.setdefault("version", "0.0.0")
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self._meta.setdefault("spacy_version", ">={}".format(about.__version__))
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self._meta.setdefault("description", "")
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self._meta.setdefault("author", "")
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self._meta.setdefault("email", "")
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self._meta.setdefault("url", "")
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self._meta.setdefault("license", "")
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self._meta["vectors"] = {
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"width": self.vocab.vectors_length,
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"vectors": len(self.vocab.vectors),
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"keys": self.vocab.vectors.n_keys,
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"name": self.vocab.vectors.name,
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}
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self._meta["pipeline"] = self.pipe_names
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return self._meta
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@meta.setter
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def meta(self, value):
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self._meta = value
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# Conveniences to access pipeline components
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@property
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def tensorizer(self):
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return self.get_pipe("tensorizer")
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@property
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def tagger(self):
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return self.get_pipe("tagger")
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@property
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def parser(self):
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return self.get_pipe("parser")
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@property
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def entity(self):
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return self.get_pipe("ner")
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@property
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def matcher(self):
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return self.get_pipe("matcher")
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@property
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def pipe_names(self):
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"""Get names of available pipeline components.
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RETURNS (list): List of component name strings, in order.
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"""
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return [pipe_name for pipe_name, _ in self.pipeline]
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def get_pipe(self, name):
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"""Get a pipeline component for a given component name.
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name (unicode): Name of pipeline component to get.
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RETURNS (callable): The pipeline component.
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"""
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for pipe_name, component in self.pipeline:
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if pipe_name == name:
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return component
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raise KeyError(Errors.E001.format(name=name, opts=self.pipe_names))
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def create_pipe(self, name, config=dict()):
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"""Create a pipeline component from a factory.
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name (unicode): Factory name to look up in `Language.factories`.
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config (dict): Configuration parameters to initialise component.
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RETURNS (callable): Pipeline component.
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"""
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if name not in self.factories:
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if name == "sbd":
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raise KeyError(Errors.E108.format(name=name))
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else:
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raise KeyError(Errors.E002.format(name=name))
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factory = self.factories[name]
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return factory(self, **config)
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def add_pipe(
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self, component, name=None, before=None, after=None, first=None, last=None
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):
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"""Add a component to the processing pipeline. Valid components are
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callables that take a `Doc` object, modify it and return it. Only one
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of before/after/first/last can be set. Default behaviour is "last".
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component (callable): The pipeline component.
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name (unicode): Name of pipeline component. Overwrites existing
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component.name attribute if available. If no name is set and
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the component exposes no name attribute, component.__name__ is
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used. An error is raised if a name already exists in the pipeline.
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before (unicode): Component name to insert component directly before.
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after (unicode): Component name to insert component directly after.
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first (bool): Insert component first / not first in the pipeline.
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last (bool): Insert component last / not last in the pipeline.
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EXAMPLE:
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>>> nlp.add_pipe(component, before='ner')
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>>> nlp.add_pipe(component, name='custom_name', last=True)
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"""
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if not hasattr(component, "__call__"):
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msg = Errors.E003.format(component=repr(component), name=name)
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if isinstance(component, basestring_) and component in self.factories:
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msg += Errors.E004.format(component=component)
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raise ValueError(msg)
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if name is None:
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if hasattr(component, "name"):
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name = component.name
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elif hasattr(component, "__name__"):
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name = component.__name__
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elif hasattr(component, "__class__") and hasattr(
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component.__class__, "__name__"
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):
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name = component.__class__.__name__
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else:
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name = repr(component)
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if name in self.pipe_names:
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raise ValueError(Errors.E007.format(name=name, opts=self.pipe_names))
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if sum([bool(before), bool(after), bool(first), bool(last)]) >= 2:
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raise ValueError(Errors.E006)
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pipe = (name, component)
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if last or not any([first, before, after]):
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self.pipeline.append(pipe)
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elif first:
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self.pipeline.insert(0, pipe)
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elif before and before in self.pipe_names:
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self.pipeline.insert(self.pipe_names.index(before), pipe)
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elif after and after in self.pipe_names:
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self.pipeline.insert(self.pipe_names.index(after) + 1, pipe)
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else:
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raise ValueError(
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Errors.E001.format(name=before or after, opts=self.pipe_names)
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)
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def has_pipe(self, name):
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"""Check if a component name is present in the pipeline. Equivalent to
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`name in nlp.pipe_names`.
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name (unicode): Name of the component.
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RETURNS (bool): Whether a component of the name exists in the pipeline.
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"""
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return name in self.pipe_names
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def replace_pipe(self, name, component):
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"""Replace a component in the pipeline.
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name (unicode): Name of the component to replace.
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component (callable): Pipeline component.
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"""
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if name not in self.pipe_names:
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raise ValueError(Errors.E001.format(name=name, opts=self.pipe_names))
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self.pipeline[self.pipe_names.index(name)] = (name, component)
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def rename_pipe(self, old_name, new_name):
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"""Rename a pipeline component.
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old_name (unicode): Name of the component to rename.
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new_name (unicode): New name of the component.
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"""
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if old_name not in self.pipe_names:
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raise ValueError(Errors.E001.format(name=old_name, opts=self.pipe_names))
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if new_name in self.pipe_names:
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raise ValueError(Errors.E007.format(name=new_name, opts=self.pipe_names))
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i = self.pipe_names.index(old_name)
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self.pipeline[i] = (new_name, self.pipeline[i][1])
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def remove_pipe(self, name):
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"""Remove a component from the pipeline.
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name (unicode): Name of the component to remove.
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RETURNS (tuple): A `(name, component)` tuple of the removed component.
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"""
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if name not in self.pipe_names:
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raise ValueError(Errors.E001.format(name=name, opts=self.pipe_names))
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return self.pipeline.pop(self.pipe_names.index(name))
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def __call__(self, text, disable=[]):
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"""Apply the pipeline to some text. The text can span multiple sentences,
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and can contain arbtrary whitespace. Alignment into the original string
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is preserved.
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text (unicode): The text to be processed.
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disable (list): Names of the pipeline components to disable.
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RETURNS (Doc): A container for accessing the annotations.
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EXAMPLE:
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>>> tokens = nlp('An example sentence. Another example sentence.')
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>>> tokens[0].text, tokens[0].head.tag_
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('An', 'NN')
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"""
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if len(text) > self.max_length:
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raise ValueError(
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Errors.E088.format(length=len(text), max_length=self.max_length)
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)
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doc = self.make_doc(text)
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for name, proc in self.pipeline:
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if name in disable:
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continue
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if not hasattr(proc, "__call__"):
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raise ValueError(Errors.E003.format(component=type(proc), name=name))
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doc = proc(doc)
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if doc is None:
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raise ValueError(Errors.E005.format(name=name))
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return doc
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def disable_pipes(self, *names):
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"""Disable one or more pipeline components. If used as a context
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manager, the pipeline will be restored to the initial state at the end
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of the block. Otherwise, a DisabledPipes object is returned, that has
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a `.restore()` method you can use to undo your changes.
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EXAMPLE:
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>>> nlp.add_pipe('parser')
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>>> nlp.add_pipe('tagger')
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>>> with nlp.disable_pipes('parser', 'tagger'):
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>>> assert not nlp.has_pipe('parser')
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>>> assert nlp.has_pipe('parser')
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>>> disabled = nlp.disable_pipes('parser')
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>>> assert len(disabled) == 1
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>>> assert not nlp.has_pipe('parser')
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>>> disabled.restore()
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>>> assert nlp.has_pipe('parser')
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"""
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return DisabledPipes(self, *names)
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def make_doc(self, text):
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return self.tokenizer(text)
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def update(self, docs, golds, drop=0.0, sgd=None, losses=None):
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"""Update the models in the pipeline.
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docs (iterable): A batch of `Doc` objects.
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golds (iterable): A batch of `GoldParse` objects.
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drop (float): The droput rate.
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sgd (callable): An optimizer.
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RETURNS (dict): Results from the update.
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EXAMPLE:
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>>> with nlp.begin_training(gold) as (trainer, optimizer):
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>>> for epoch in trainer.epochs(gold):
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>>> for docs, golds in epoch:
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>>> state = nlp.update(docs, golds, sgd=optimizer)
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"""
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if len(docs) != len(golds):
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raise IndexError(Errors.E009.format(n_docs=len(docs), n_golds=len(golds)))
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if len(docs) == 0:
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return
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if sgd is None:
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if self._optimizer is None:
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self._optimizer = create_default_optimizer(Model.ops)
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sgd = self._optimizer
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# Allow dict of args to GoldParse, instead of GoldParse objects.
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gold_objs = []
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doc_objs = []
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for doc, gold in zip(docs, golds):
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if isinstance(doc, basestring_):
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doc = self.make_doc(doc)
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if not isinstance(gold, GoldParse):
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|
gold = GoldParse(doc, **gold)
|
|
doc_objs.append(doc)
|
|
gold_objs.append(gold)
|
|
golds = gold_objs
|
|
docs = doc_objs
|
|
grads = {}
|
|
|
|
def get_grads(W, dW, key=None):
|
|
grads[key] = (W, dW)
|
|
|
|
get_grads.alpha = sgd.alpha
|
|
get_grads.b1 = sgd.b1
|
|
get_grads.b2 = sgd.b2
|
|
|
|
pipes = list(self.pipeline)
|
|
random.shuffle(pipes)
|
|
for name, proc in pipes:
|
|
if not hasattr(proc, "update"):
|
|
continue
|
|
grads = {}
|
|
proc.update(docs, golds, drop=drop, sgd=get_grads, losses=losses)
|
|
for key, (W, dW) in grads.items():
|
|
sgd(W, dW, key=key)
|
|
|
|
def rehearse(self, docs, sgd=None, losses=None, config=None):
|
|
"""Make a "rehearsal" update to the models in the pipeline, to prevent
|
|
forgetting. Rehearsal updates run an initial copy of the model over some
|
|
data, and update the model so its current predictions are more like the
|
|
initial ones. This is useful for keeping a pre-trained model on-track,
|
|
even if you're updating it with a smaller set of examples.
|
|
|
|
docs (iterable): A batch of `Doc` objects.
|
|
drop (float): The droput rate.
|
|
sgd (callable): An optimizer.
|
|
RETURNS (dict): Results from the update.
|
|
|
|
EXAMPLE:
|
|
>>> raw_text_batches = minibatch(raw_texts)
|
|
>>> for labelled_batch in minibatch(zip(train_docs, train_golds)):
|
|
>>> docs, golds = zip(*train_docs)
|
|
>>> nlp.update(docs, golds)
|
|
>>> raw_batch = [nlp.make_doc(text) for text in next(raw_text_batches)]
|
|
>>> nlp.rehearse(raw_batch)
|
|
"""
|
|
if len(docs) == 0:
|
|
return
|
|
if sgd is None:
|
|
if self._optimizer is None:
|
|
self._optimizer = create_default_optimizer(Model.ops)
|
|
sgd = self._optimizer
|
|
docs = list(docs)
|
|
for i, doc in enumerate(docs):
|
|
if isinstance(doc, basestring_):
|
|
docs[i] = self.make_doc(doc)
|
|
pipes = list(self.pipeline)
|
|
random.shuffle(pipes)
|
|
if config is None:
|
|
config = {}
|
|
grads = {}
|
|
|
|
def get_grads(W, dW, key=None):
|
|
grads[key] = (W, dW)
|
|
|
|
get_grads.alpha = sgd.alpha
|
|
get_grads.b1 = sgd.b1
|
|
get_grads.b2 = sgd.b2
|
|
|
|
for name, proc in pipes:
|
|
if not hasattr(proc, "rehearse"):
|
|
continue
|
|
grads = {}
|
|
proc.rehearse(docs, sgd=get_grads, losses=losses, **config.get(name, {}))
|
|
for key, (W, dW) in grads.items():
|
|
sgd(W, dW, key=key)
|
|
|
|
return losses
|
|
|
|
def preprocess_gold(self, docs_golds):
|
|
"""Can be called before training to pre-process gold data. By default,
|
|
it handles nonprojectivity and adds missing tags to the tag map.
|
|
|
|
docs_golds (iterable): Tuples of `Doc` and `GoldParse` objects.
|
|
YIELDS (tuple): Tuples of preprocessed `Doc` and `GoldParse` objects.
|
|
"""
|
|
for name, proc in self.pipeline:
|
|
if hasattr(proc, "preprocess_gold"):
|
|
docs_golds = proc.preprocess_gold(docs_golds)
|
|
for doc, gold in docs_golds:
|
|
yield doc, gold
|
|
|
|
def begin_training(self, get_gold_tuples=None, sgd=None, **cfg):
|
|
"""Allocate models, pre-process training data and acquire a trainer and
|
|
optimizer. Used as a contextmanager.
|
|
|
|
get_gold_tuples (function): Function returning gold data
|
|
**cfg: Config parameters.
|
|
RETURNS: An optimizer
|
|
"""
|
|
if get_gold_tuples is None:
|
|
get_gold_tuples = lambda: []
|
|
# Populate vocab
|
|
else:
|
|
for _, annots_brackets in get_gold_tuples():
|
|
for annots, _ in annots_brackets:
|
|
for word in annots[1]:
|
|
_ = self.vocab[word] # noqa: F841
|
|
if cfg.get("device", -1) >= 0:
|
|
util.use_gpu(cfg["device"])
|
|
if self.vocab.vectors.data.shape[1] >= 1:
|
|
self.vocab.vectors.data = Model.ops.asarray(self.vocab.vectors.data)
|
|
link_vectors_to_models(self.vocab)
|
|
if self.vocab.vectors.data.shape[1]:
|
|
cfg["pretrained_vectors"] = self.vocab.vectors.name
|
|
if sgd is None:
|
|
sgd = create_default_optimizer(Model.ops)
|
|
self._optimizer = sgd
|
|
for name, proc in self.pipeline:
|
|
if hasattr(proc, "begin_training"):
|
|
proc.begin_training(
|
|
get_gold_tuples, pipeline=self.pipeline, sgd=self._optimizer, **cfg
|
|
)
|
|
return self._optimizer
|
|
|
|
def resume_training(self, sgd=None, **cfg):
|
|
"""Continue training a pre-trained model.
|
|
|
|
Create and return an optimizer, and initialize "rehearsal" for any pipeline
|
|
component that has a .rehearse() method. Rehearsal is used to prevent
|
|
models from "forgetting" their initialised "knowledge". To perform
|
|
rehearsal, collect samples of text you want the models to retain performance
|
|
on, and call nlp.rehearse() with a batch of Doc objects.
|
|
"""
|
|
if cfg.get("device", -1) >= 0:
|
|
util.use_gpu(cfg["device"])
|
|
if self.vocab.vectors.data.shape[1] >= 1:
|
|
self.vocab.vectors.data = Model.ops.asarray(self.vocab.vectors.data)
|
|
link_vectors_to_models(self.vocab)
|
|
if self.vocab.vectors.data.shape[1]:
|
|
cfg["pretrained_vectors"] = self.vocab.vectors.name
|
|
if sgd is None:
|
|
sgd = create_default_optimizer(Model.ops)
|
|
self._optimizer = sgd
|
|
for name, proc in self.pipeline:
|
|
if hasattr(proc, "_rehearsal_model"):
|
|
proc._rehearsal_model = deepcopy(proc.model)
|
|
return self._optimizer
|
|
|
|
def evaluate(self, docs_golds, verbose=False):
|
|
scorer = Scorer()
|
|
docs, golds = zip(*docs_golds)
|
|
docs = list(docs)
|
|
golds = list(golds)
|
|
for name, pipe in self.pipeline:
|
|
if not hasattr(pipe, "pipe"):
|
|
docs = (pipe(doc) for doc in docs)
|
|
else:
|
|
docs = pipe.pipe(docs, batch_size=256)
|
|
for doc, gold in zip(docs, golds):
|
|
if verbose:
|
|
print(doc)
|
|
scorer.score(doc, gold, verbose=verbose)
|
|
return scorer
|
|
|
|
@contextmanager
|
|
def use_params(self, params, **cfg):
|
|
"""Replace weights of models in the pipeline with those provided in the
|
|
params dictionary. Can be used as a contextmanager, in which case,
|
|
models go back to their original weights after the block.
|
|
|
|
params (dict): A dictionary of parameters keyed by model ID.
|
|
**cfg: Config parameters.
|
|
|
|
EXAMPLE:
|
|
>>> with nlp.use_params(optimizer.averages):
|
|
>>> nlp.to_disk('/tmp/checkpoint')
|
|
"""
|
|
contexts = [
|
|
pipe.use_params(params)
|
|
for name, pipe in self.pipeline
|
|
if hasattr(pipe, "use_params")
|
|
]
|
|
# TODO: Having trouble with contextlib
|
|
# Workaround: these aren't actually context managers atm.
|
|
for context in contexts:
|
|
try:
|
|
next(context)
|
|
except StopIteration:
|
|
pass
|
|
yield
|
|
for context in contexts:
|
|
try:
|
|
next(context)
|
|
except StopIteration:
|
|
pass
|
|
|
|
def pipe(
|
|
self,
|
|
texts,
|
|
as_tuples=False,
|
|
n_threads=2,
|
|
batch_size=1000,
|
|
disable=[],
|
|
cleanup=False,
|
|
):
|
|
"""Process texts as a stream, and yield `Doc` objects in order.
|
|
|
|
texts (iterator): A sequence of texts to process.
|
|
as_tuples (bool):
|
|
If set to True, inputs should be a sequence of
|
|
(text, context) tuples. Output will then be a sequence of
|
|
(doc, context) tuples. Defaults to False.
|
|
n_threads (int): Currently inactive.
|
|
batch_size (int): The number of texts to buffer.
|
|
disable (list): Names of the pipeline components to disable.
|
|
cleanup (bool): If True, unneeded strings are freed,
|
|
to control memory use. Experimental.
|
|
YIELDS (Doc): Documents in the order of the original text.
|
|
|
|
EXAMPLE:
|
|
>>> texts = [u'One document.', u'...', u'Lots of documents']
|
|
>>> for doc in nlp.pipe(texts, batch_size=50, n_threads=4):
|
|
>>> assert doc.is_parsed
|
|
"""
|
|
if as_tuples:
|
|
text_context1, text_context2 = itertools.tee(texts)
|
|
texts = (tc[0] for tc in text_context1)
|
|
contexts = (tc[1] for tc in text_context2)
|
|
docs = self.pipe(
|
|
texts, n_threads=n_threads, batch_size=batch_size, disable=disable
|
|
)
|
|
for doc, context in izip(docs, contexts):
|
|
yield (doc, context)
|
|
return
|
|
docs = (self.make_doc(text) for text in texts)
|
|
for name, proc in self.pipeline:
|
|
if name in disable:
|
|
continue
|
|
if hasattr(proc, "pipe"):
|
|
docs = proc.pipe(docs, n_threads=n_threads, batch_size=batch_size)
|
|
else:
|
|
# Apply the function, but yield the doc
|
|
docs = _pipe(proc, docs)
|
|
# Track weakrefs of "recent" documents, so that we can see when they
|
|
# expire from memory. When they do, we know we don't need old strings.
|
|
# This way, we avoid maintaining an unbounded growth in string entries
|
|
# in the string store.
|
|
recent_refs = weakref.WeakSet()
|
|
old_refs = weakref.WeakSet()
|
|
# Keep track of the original string data, so that if we flush old strings,
|
|
# we can recover the original ones. However, we only want to do this if we're
|
|
# really adding strings, to save up-front costs.
|
|
original_strings_data = None
|
|
nr_seen = 0
|
|
for doc in docs:
|
|
yield doc
|
|
if cleanup:
|
|
recent_refs.add(doc)
|
|
if nr_seen < 10000:
|
|
old_refs.add(doc)
|
|
nr_seen += 1
|
|
elif len(old_refs) == 0:
|
|
old_refs, recent_refs = recent_refs, old_refs
|
|
if original_strings_data is None:
|
|
original_strings_data = list(self.vocab.strings)
|
|
else:
|
|
keys, strings = self.vocab.strings._cleanup_stale_strings(
|
|
original_strings_data
|
|
)
|
|
self.vocab._reset_cache(keys, strings)
|
|
self.tokenizer._reset_cache(keys)
|
|
nr_seen = 0
|
|
|
|
def to_disk(self, path, disable=tuple()):
|
|
"""Save the current state to a directory. If a model is loaded, this
|
|
will include the model.
|
|
|
|
path (unicode or Path): A path to a directory, which will be created if
|
|
it doesn't exist. Paths may be strings or `Path`-like objects.
|
|
disable (list): Names of pipeline components to disable and prevent
|
|
from being saved.
|
|
|
|
EXAMPLE:
|
|
>>> nlp.to_disk('/path/to/models')
|
|
"""
|
|
path = util.ensure_path(path)
|
|
serializers = OrderedDict(
|
|
(
|
|
("tokenizer", lambda p: self.tokenizer.to_disk(p, vocab=False)),
|
|
("meta.json", lambda p: p.open("w").write(srsly.json_dumps(self.meta))),
|
|
)
|
|
)
|
|
for name, proc in self.pipeline:
|
|
if not hasattr(proc, "name"):
|
|
continue
|
|
if name in disable:
|
|
continue
|
|
if not hasattr(proc, "to_disk"):
|
|
continue
|
|
serializers[name] = lambda p, proc=proc: proc.to_disk(p, vocab=False)
|
|
serializers["vocab"] = lambda p: self.vocab.to_disk(p)
|
|
util.to_disk(path, serializers, {p: False for p in disable})
|
|
|
|
def from_disk(self, path, disable=tuple()):
|
|
"""Loads state from a directory. Modifies the object in place and
|
|
returns it. If the saved `Language` object contains a model, the
|
|
model will be loaded.
|
|
|
|
path (unicode or Path): A path to a directory. Paths may be either
|
|
strings or `Path`-like objects.
|
|
disable (list): Names of the pipeline components to disable.
|
|
RETURNS (Language): The modified `Language` object.
|
|
|
|
EXAMPLE:
|
|
>>> from spacy.language import Language
|
|
>>> nlp = Language().from_disk('/path/to/models')
|
|
"""
|
|
path = util.ensure_path(path)
|
|
deserializers = OrderedDict(
|
|
(
|
|
("meta.json", lambda p: self.meta.update(srsly.read_json(p))),
|
|
(
|
|
"vocab",
|
|
lambda p: (
|
|
self.vocab.from_disk(p) and _fix_pretrained_vectors_name(self)
|
|
),
|
|
),
|
|
("tokenizer", lambda p: self.tokenizer.from_disk(p, vocab=False)),
|
|
)
|
|
)
|
|
for name, proc in self.pipeline:
|
|
if name in disable:
|
|
continue
|
|
if not hasattr(proc, "from_disk"):
|
|
continue
|
|
deserializers[name] = lambda p, proc=proc: proc.from_disk(p, vocab=False)
|
|
exclude = {p: False for p in disable}
|
|
if not (path / "vocab").exists():
|
|
exclude["vocab"] = True
|
|
util.from_disk(path, deserializers, exclude)
|
|
self._path = path
|
|
return self
|
|
|
|
def to_bytes(self, disable=[], **exclude):
|
|
"""Serialize the current state to a binary string.
|
|
|
|
disable (list): Nameds of pipeline components to disable and prevent
|
|
from being serialized.
|
|
RETURNS (bytes): The serialized form of the `Language` object.
|
|
"""
|
|
serializers = OrderedDict(
|
|
(
|
|
("vocab", lambda: self.vocab.to_bytes()),
|
|
("tokenizer", lambda: self.tokenizer.to_bytes(vocab=False)),
|
|
("meta", lambda: srsly.json_dumps(self.meta)),
|
|
)
|
|
)
|
|
for i, (name, proc) in enumerate(self.pipeline):
|
|
if name in disable:
|
|
continue
|
|
if not hasattr(proc, "to_bytes"):
|
|
continue
|
|
serializers[i] = lambda proc=proc: proc.to_bytes(vocab=False)
|
|
return util.to_bytes(serializers, exclude)
|
|
|
|
def from_bytes(self, bytes_data, disable=[]):
|
|
"""Load state from a binary string.
|
|
|
|
bytes_data (bytes): The data to load from.
|
|
disable (list): Names of the pipeline components to disable.
|
|
RETURNS (Language): The `Language` object.
|
|
"""
|
|
deserializers = OrderedDict(
|
|
(
|
|
("meta", lambda b: self.meta.update(srsly.json_loads(b))),
|
|
(
|
|
"vocab",
|
|
lambda b: (
|
|
self.vocab.from_bytes(b) and _fix_pretrained_vectors_name(self)
|
|
),
|
|
),
|
|
("tokenizer", lambda b: self.tokenizer.from_bytes(b, vocab=False)),
|
|
)
|
|
)
|
|
for i, (name, proc) in enumerate(self.pipeline):
|
|
if name in disable:
|
|
continue
|
|
if not hasattr(proc, "from_bytes"):
|
|
continue
|
|
deserializers[i] = lambda b, proc=proc: proc.from_bytes(b, vocab=False)
|
|
util.from_bytes(bytes_data, deserializers, {})
|
|
return self
|
|
|
|
|
|
def _fix_pretrained_vectors_name(nlp):
|
|
# TODO: Replace this once we handle vectors consistently as static
|
|
# data
|
|
if "vectors" in nlp.meta and nlp.meta["vectors"].get("name"):
|
|
nlp.vocab.vectors.name = nlp.meta["vectors"]["name"]
|
|
elif not nlp.vocab.vectors.size:
|
|
nlp.vocab.vectors.name = None
|
|
elif "name" in nlp.meta and "lang" in nlp.meta:
|
|
vectors_name = "%s_%s.vectors" % (nlp.meta["lang"], nlp.meta["name"])
|
|
nlp.vocab.vectors.name = vectors_name
|
|
else:
|
|
raise ValueError(Errors.E092)
|
|
if nlp.vocab.vectors.size != 0:
|
|
link_vectors_to_models(nlp.vocab)
|
|
for name, proc in nlp.pipeline:
|
|
if not hasattr(proc, "cfg"):
|
|
continue
|
|
proc.cfg.setdefault("deprecation_fixes", {})
|
|
proc.cfg["deprecation_fixes"]["vectors_name"] = nlp.vocab.vectors.name
|
|
|
|
|
|
class DisabledPipes(list):
|
|
"""Manager for temporary pipeline disabling."""
|
|
|
|
def __init__(self, nlp, *names):
|
|
self.nlp = nlp
|
|
self.names = names
|
|
# Important! Not deep copy -- we just want the container (but we also
|
|
# want to support people providing arbitrarily typed nlp.pipeline
|
|
# objects.)
|
|
self.original_pipeline = copy(nlp.pipeline)
|
|
list.__init__(self)
|
|
self.extend(nlp.remove_pipe(name) for name in names)
|
|
|
|
def __enter__(self):
|
|
return self
|
|
|
|
def __exit__(self, *args):
|
|
self.restore()
|
|
|
|
def restore(self):
|
|
"""Restore the pipeline to its state when DisabledPipes was created."""
|
|
current, self.nlp.pipeline = self.nlp.pipeline, self.original_pipeline
|
|
unexpected = [name for name, pipe in current if not self.nlp.has_pipe(name)]
|
|
if unexpected:
|
|
# Don't change the pipeline if we're raising an error.
|
|
self.nlp.pipeline = current
|
|
raise ValueError(Errors.E008.format(names=unexpected))
|
|
self[:] = []
|
|
|
|
|
|
def _pipe(func, docs):
|
|
for doc in docs:
|
|
doc = func(doc)
|
|
yield doc
|